I'm using the algorithm `'COBYLA'`

in scipy's `optimize.minimize`

function (v.0.11 build for cygwin). I observed that the parameter `bounds`

seems not to be used in this case. For instance, the simple example:

```
from scipy.optimize import minimize
def f(x):
return -sum(x)
minimize(f, x0=1, method='COBYLA', bounds=(-2,2))
```

returns:

```
status: 2.0
nfev: 1000
maxcv: 0.0
success: False
fun: -1000.0
x: array(1000.0)
message: 'Maximum number of function evaluations has been exceeded.'
```

instead of the expected `2`

for `x`

.

Did anyone perceived the same problem? Is there a known bug or documentation error? In the scipy 0.11 documentation, this option is not excluded for the **COBYLA** algorithm. In fact the function `fmin_cobyla`

doesn't have the `bounds`

parameter.
Thanks for any hint.

`bounds=[(-2,2)]`

. I don't have a new scipy with minimize to try though. – seberg Oct 8 '12 at 12:59